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Hestia: Hierarchical Next-Best-View Exploration for Systematic Intelligent Autonomous Data Collection

1 August 2025
Cheng-You Lu
Zhuoli Zhuang
Nguyen Thanh Trung Le
Da Xiao
Yu-Cheng Chang
T. Do
Srinath Sridhar
Chin-Teng Lin
ArXiv (abs)PDFHTML
Main:10 Pages
18 Figures
Bibliography:6 Pages
6 Tables
Appendix:15 Pages
Abstract

Advances in 3D reconstruction and novel view synthesis have enabled efficient, photorealistic rendering, but the data collection process remains largely manual, making it time-consuming and labor-intensive. To address the challenges, this study introduces Hierarchical Next-Best-View Exploration for Systematic Intelligent Autonomous Data Collection (Hestia), which leverages reinforcement learning to learn a generalizable policy for 5-DoF next-best viewpoint prediction. Unlike prior approaches, Hestia systematically defines the next-best-view task by proposing core components such as dataset choice, observation design, action space, reward calculation, and learning schemes, forming a foundation for the planner. Hestia goes beyond prior next-best-view approaches and traditional capture systems through integration and validation in a real-world setup, where a drone serves as a mobile sensor for active scene exploration. Experimental results show that Hestia performs robustly across three datasets and translated object settings in the NVIDIA IsaacLab environment, and proves feasible for real-world deployment.

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